I try to implement a recognition of kanji that are drawn with the mouse. I have for each Kanji I intend to recognize exactly one sample file that provides all strokes with start and end position of the respective stroke (for a fixed image resolution).
I was wondering how I could use these stroke information for kanji recognition. I was thinking about using the slope between a strokes start and endpoint and using these as feature for machine learning, but with only one sample per kanji I would have ~2000 classes (one for each kanji) and a data sparsity problem (one set of stroke information for each kanji only). Is it possible to use ML on such a sparse data set?